Affiliation:
1. Research Scholar, Manonmaniam Sundaranar University, Tirunelveli 627012, India
2. Department of I.T, K.L.N. College of Information Technology, Tamilnadu 630612, India
Abstract
A new feature selection method based on Inductive probability is proposed in this paper. The main idea is to find the dependent attributes and remove the redundant ones among them. The technology to obtain the dependency needed is based on Inductive probability approach. The purpose
of the proposed method is to reduce the computational complexity and increase the classification accuracy of the selected feature subsets. The dependence between two attributes is determined based on the probabilities of their joint values that contribute to positive and negative classification
decisions. If there is an opposing set of attribute values that do not lead to opposing classification decisions (zero probability), the two attributes are considered independent, otherwise dependent. One of them can be removed and thus the number of attributes is reduced. A new attribute
selection algorithm with Inductive probability is implemented and evaluated through extensive experiments, comparing with related attribute selection algorithms over eight datasets such as Molecular Biology, Connect4, Soybean, Zoo, Ballon, Mushroom, Lenses and Fictional from UCI Machine Learning
Repository databases.
Publisher
American Scientific Publishers
Subject
Electrical and Electronic Engineering,Computational Mathematics,Condensed Matter Physics,General Materials Science,General Chemistry
Cited by
1 articles.
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